Shipping Coordinator

Newport, Isle of Wight
3 weeks ago
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Shipping Co-ordinator, Isle of Wight (Hybrid) - 3 days on site

Hexwired Recruitment have partnered up with an electronics manufacturing company who design and produce electronic products and systems for the communications and government services markets. They are now on the search for a talented Shipping Co-ordinator to join their team.

Key responsibilities:

  • Prioritise tasks to ensure packing and dispatch deadlines are consistently met.

  • Complete and verify all required paperwork accurately.

  • Record deliveries in online processing and documentation systems, updating customer account records accordingly.

  • Support the continuous improvement of logistics processes and procedures to enhance consistency, efficiency, and reduce waste.

  • Perform any other necessary dispatch and shipping duties as required.

  • Process and action shipment requests in line with agreed turnaround times.

  • Ensure full compliance with customs and HMRC regulations, including commodity codes, customs procedure codes, export control licenses, and Incoterms.

    Key requirements:

  • Demonstrated experience in a similar role.

  • Experience managing exportcontrolled goods.

  • Proven background in coordinating logistics for finished products.

  • Knowledge of processes related to the ISO 9001 standard.

  • Strong ability to prioritize tasks and work independently.

  • Skilled in preparing dispatch data promptly and meeting deadlines.

    The company are looking to offer a salary between £26k - £30k depending on experience, along with excellent benefits. If you are interested in this Shipping Co-ordinator role based in the Isle of Wite, please apply.

    For more information on this role, or any other jobs across; Embedded, C++ programming, Embedded Linux, Golang Development, Machine Learning, Data Science or Simulation contact us today

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